Patents by Inventor Nikodem Majer

Nikodem Majer has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 9569694
    Abstract: An image processor (10) has a window selector for choosing a detection window within the image, and a self similarity computation part (40) for determining self-similarity information for a group of the pixels in any part of the detection window, to represent an amount of self-similarity of that group to other groups in any other part of the detector window, and for repeating the determination for groups in all parts of the detection window, to generate a global self similarity descriptor for the detection window. A classifier (50) is used for classifying whether an object is present based on the global self-similarity descriptor. By using global self-similarity rather than local similarities more information is captured which can lead to better classification. In particular, it helps enable recognition of more distant self-similarities inherent in the object, and self-similarities present at any scale.
    Type: Grant
    Filed: January 6, 2016
    Date of Patent: February 14, 2017
    Assignees: TOYOTA MOTOR EUROPE NV/SA, TECHNISCHE UNIVERSITAT DARMSTADT
    Inventors: Gabriel Othmezouri, Ichiro Sakata, Bernt Schiele, Stefan Walk, Nikodem Majer, Konrad Schindler
  • Publication number: 20160117571
    Abstract: An image processor (10) has a window selector for choosing a detection window within the image, and a self similarity computation part (40) for determining self-similarity information for a group of the pixels in any part of the detection window, to represent an amount of self-similarity of that group to other groups in any other part of the detector window, and for repeating the determination for groups in all parts of the detection window, to generate a global self similarity descriptor for the detection window. A classifier (50) is used for classifying whether an object is present based on the global self-similarity descriptor. By using global self-similarity rather than local similarities more information is captured which can lead to better classification. In particular, it helps enable recognition of more distant self-similarities inherent in the object, and self-similarities present at any scale.
    Type: Application
    Filed: January 6, 2016
    Publication date: April 28, 2016
    Applicants: TOYOTA MOTOR EUROPE NV/SA, TECHNISCHE UNIVERSITAT DARMSTADT
    Inventors: Gabriel Othmezouri, Chiro Sakata, Bernt Schele, Stefan Walk, Nikodem Majer, Konrad Schindler
  • Publication number: 20130058535
    Abstract: An image processor (10) has a window selector for choosing a detection window within the image, and a self similarity computation part (40) for determining self-similarity information for a group of the pixels in any part of the detection window, to represent an amount of self-similarity of that group to other groups in any other part of the detector window, and for repeating the determination for groups in all parts of the detection window, to generate a global self similarity descriptor for the detection window. A classifier (50) is used for classifying whether an object is present based on the global self-similarity descriptor. By using global self-similarity rather than local similarities more information is captured which can lead to better classification. In particular, it helps enable recognition of more distant self-similarities inherent in the object, and self-similarities present at any scale.
    Type: Application
    Filed: February 28, 2011
    Publication date: March 7, 2013
    Applicants: TECHNISCHE UNIVERSITAT DARMSTADT, TOYOTA MOTOR EUROPE NV/SA
    Inventors: Gabriel Othmezouri, Ichiro Sakata, Bernt Schiele, Stefan Walk, Nikodem Majer, Konrad Schindler